{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "id": "c409f1e5-b1c3-45c0-98df-617f8324e68f",
   "metadata": {
    "scrolled": true
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
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     ]
    }
   ],
   "source": [
    "# 如果已经执行 pip install -r requirements.txt，以下命令不建议执行，避免版本升级后，API不兼容\n",
    "# !pip install tiktoken openai pandas matplotlib plotly scikit-learn numpy\n",
    "# !pip install -r ../requirements.txt"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 29,
   "id": "ed50a54d-017d-4f32-b499-86031053cd0f",
   "metadata": {},
   "outputs": [],
   "source": [
    "# 导入panda包，用于数据处理和分析，方便进行数据读取、处理、分析等操作\n",
    "import pandas as pd\n",
    "# 计算token数量\n",
    "import tiktoken\n",
    "# 大模型接口调用\n",
    "from openai import OpenAI\n",
    "# 把字符串转换为向量\n",
    "import ast\n",
    "# 开源数值计算扩展，可用于存储和处理大型矩阵\n",
    "import numpy as np\n",
    "# 数据可视化的降维，将数据从高维度映射到2D或3D\n",
    "from sklearn.manifold import TSNE\n",
    "# 2D绘图\n",
    "import matplotlib.pyplot as plt\n",
    "import matplotlib\n",
    "# 实现K-Means聚类算法\n",
    "from sklearn.cluster import KMeans"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 12,
   "id": "9c643596-6001-429a-8e9c-f226e7b77d60",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/html": [
       "<div>\n",
       "<style scoped>\n",
       "    .dataframe tbody tr th:only-of-type {\n",
       "        vertical-align: middle;\n",
       "    }\n",
       "\n",
       "    .dataframe tbody tr th {\n",
       "        vertical-align: top;\n",
       "    }\n",
       "\n",
       "    .dataframe thead th {\n",
       "        text-align: right;\n",
       "    }\n",
       "</style>\n",
       "<table border=\"1\" class=\"dataframe\">\n",
       "  <thead>\n",
       "    <tr style=\"text-align: right;\">\n",
       "      <th></th>\n",
       "      <th>Time</th>\n",
       "      <th>ProductId</th>\n",
       "      <th>UserId</th>\n",
       "      <th>Score</th>\n",
       "      <th>Summary</th>\n",
       "      <th>Text</th>\n",
       "      <th>combined</th>\n",
       "    </tr>\n",
       "  </thead>\n",
       "  <tbody>\n",
       "    <tr>\n",
       "      <th>0</th>\n",
       "      <td>1351123200</td>\n",
       "      <td>B003XPF9BO</td>\n",
       "      <td>A3R7JR3FMEBXQB</td>\n",
       "      <td>5</td>\n",
       "      <td>where does one  start...and stop... with a tre...</td>\n",
       "      <td>Wanted to save some to bring to my Chicago fam...</td>\n",
       "      <td>Title: where does one  start...and stop... wit...</td>\n",
       "    </tr>\n",
       "    <tr>\n",
       "      <th>1</th>\n",
       "      <td>1351123200</td>\n",
       "      <td>B003JK537S</td>\n",
       "      <td>A3JBPC3WFUT5ZP</td>\n",
       "      <td>1</td>\n",
       "      <td>Arrived in pieces</td>\n",
       "      <td>Not pleased at all. When I opened the box, mos...</td>\n",
       "      <td>Title: Arrived in pieces; Content: Not pleased...</td>\n",
       "    </tr>\n",
       "  </tbody>\n",
       "</table>\n",
       "</div>"
      ],
      "text/plain": [
       "         Time   ProductId          UserId  Score  \\\n",
       "0  1351123200  B003XPF9BO  A3R7JR3FMEBXQB      5   \n",
       "1  1351123200  B003JK537S  A3JBPC3WFUT5ZP      1   \n",
       "\n",
       "                                             Summary  \\\n",
       "0  where does one  start...and stop... with a tre...   \n",
       "1                                  Arrived in pieces   \n",
       "\n",
       "                                                Text  \\\n",
       "0  Wanted to save some to bring to my Chicago fam...   \n",
       "1  Not pleased at all. When I opened the box, mos...   \n",
       "\n",
       "                                            combined  \n",
       "0  Title: where does one  start...and stop... wit...  \n",
       "1  Title: Arrived in pieces; Content: Not pleased...  "
      ]
     },
     "execution_count": 12,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "input_datapath = \"data/fine_food_reviews_1k.csv\"\n",
    "df = pd.read_csv(input_datapath, index_col=0)\n",
    "df = df[[\"Time\", \"ProductId\", \"UserId\", \"Score\", \"Summary\", \"Text\"]]\n",
    "df = df.dropna()\n",
    "\n",
    "# 将 \"Summary\" 和 \"Text\" 字段组合成新的字段 \"combined\"\n",
    "df[\"combined\"] = (\n",
    "    \"Title: \" + df.Summary.str.strip() + \"; Content: \" + df.Text.str.strip()\n",
    ")\n",
    "df.head(2)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 14,
   "id": "f0af0870-df7b-4300-9ab3-954153655ed5",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "0      Title: where does one  start...and stop... wit...\n",
       "1      Title: Arrived in pieces; Content: Not pleased...\n",
       "2      Title: It isn't blanc mange, but isn't bad . ....\n",
       "3      Title: These also have SALT and it's not sea s...\n",
       "4      Title: Happy with the product; Content: My dog...\n",
       "                             ...                        \n",
       "995    Title: Delicious!; Content: I have ordered the...\n",
       "996    Title: Good Training Treat; Content: My dog wi...\n",
       "997    Title: Jamica Me Crazy Coffee; Content: Wolfga...\n",
       "998    Title: Party Peanuts; Content: Great product f...\n",
       "999    Title: I love Maui Coffee!; Content: My first ...\n",
       "Name: combined, Length: 1000, dtype: object"
      ]
     },
     "execution_count": 14,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "df[\"combined\"]"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 16,
   "id": "524aef57-b40c-49cc-a148-028197333ea9",
   "metadata": {},
   "outputs": [],
   "source": [
    "# 模型类型\n",
    "# 建议使用官方推荐的第二代嵌入模型：text-embedding-ada-002\n",
    "embedding_model = \"text-embedding-ada-002\"\n",
    "# text-embedding-ada-002 模型对应的分词器（TOKENIZER）\n",
    "embedding_encoding = \"cl100k_base\"\n",
    "# text-embedding-ada-002 模型支持的输入最大 Token 数是8191，向量维度 1536\n",
    "# 在我们的 DEMO 中过滤 Token 超过 8000 的文本\n",
    "max_tokens = 8000  "
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 18,
   "id": "e8f4ad5d-c011-46f8-8252-b7aca0e50368",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "1000"
      ]
     },
     "execution_count": 18,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "# 设置要筛选的评论数量为1000\n",
    "top_n = 1000\n",
    "# 对DataFrame进行排序，基于\"Time\"列，然后选取最后的2000条评论。\n",
    "# 这个假设是，我们认为最近的评论可能更相关，因此我们将对它们进行初始筛选。\n",
    "df = df.sort_values(\"Time\").tail(top_n * 2) \n",
    "# 丢弃\"Time\"列，因为我们在这个分析中不再需要它。\n",
    "df.drop(\"Time\", axis=1, inplace=True)\n",
    "# 从'embedding_encoding'获取编码\n",
    "encoding = tiktoken.get_encoding(embedding_encoding)\n",
    "\n",
    "# 计算每条评论的token数量。我们通过使用encoding.encode方法获取每条评论的token数，然后把结果存储在新的'n_tokens'列中。\n",
    "df[\"n_tokens\"] = df.combined.apply(lambda x: len(encoding.encode(x)))\n",
    "\n",
    "# 如果评论的token数量超过最大允许的token数量，我们将忽略（删除）该评论。\n",
    "# 我们使用.tail方法获取token数量在允许范围内的最后top_n（1000）条评论。\n",
    "df = df[df.n_tokens <= max_tokens].tail(top_n)\n",
    "\n",
    "# 打印出剩余评论的数量。\n",
    "len(df)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 20,
   "id": "c237e7bf-5414-41fc-997e-65a9f23a41c6",
   "metadata": {},
   "outputs": [],
   "source": [
    "from openai import OpenAI"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 26,
   "id": "fb3f7baf-25d4-4c68-b268-f3e2f3765611",
   "metadata": {},
   "outputs": [],
   "source": [
    "# OpenAI Python SDK v1.0 更新后的使用方式\n",
    "# client = OpenAI()\n",
    "\n",
    "# 使用OpenAI代理方式，需要修改base_url\n",
    "client = OpenAI(\n",
    "    api_key=\"sk-y7DHfp9fzuCxOVm2158638099f9541D3833aB4F4Ed674aCf\", # 你的KEY\n",
    "    base_url=\"https://vip.apiyi.com/v1\"\n",
    ")\n",
    "\n",
    "# 替换为国内大模型 API 地址\n",
    "# # 智谱API调用(glm-4v-flash)\n",
    "# openai = OpenAI(\n",
    "#     api_key=\"XXX\",\n",
    "#     base_url=\"https://open.bigmodel.cn/api/paas/v4/\"\n",
    "# )\n",
    "# DeepSeek API调用（deepseek-chat / deepseek-reasoner）\n",
    "# DeepSeek Completions接口 用户需要设置 base_url=\"https://api.deepseek.com/beta\" 来使用此功能\n",
    "# openai = OpenAI(\n",
    "#     api_key=\"XXX\",\n",
    "#     base_url=\"https://api.deepseek.com\"\n",
    "# )\n"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 24,
   "id": "3aa1f45f-796f-4e4e-94df-e4aae68ff7d7",
   "metadata": {
    "scrolled": true
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
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     ]
    }
   ],
   "source": [
    "# 新版本创建 Embedding 向量的方法\n",
    "# Ref：https://community.openai.com/t/embeddings-api-documentation-needs-to-updated/475663\n",
    "# res = client.embeddings.create(input=\"abc\", model=embedding_model)\n",
    "# print(res.data[0].embedding)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 24,
   "id": "f2529476-b7cd-46ce-bc07-37405625a8ae",
   "metadata": {},
   "outputs": [],
   "source": [
    "# 使用新方法调用 OpenAI Embedding API\n",
    "def embedding_text(text, model=\"text-embedding-ada-002\"):\n",
    "    res = client.embeddings.create(input=text, model=model)\n",
    "    return res.data[0].embedding"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 28,
   "id": "f8f914e3-a276-47f1-82d1-daaf4dbd9f15",
   "metadata": {},
   "outputs": [],
   "source": [
    "# 实际生成会耗时几分钟，逐行调用 OpenAI Embedding API\n",
    "\n",
    "df[\"embedding\"] = df.combined.apply(embedding_text)\n",
    "output_datapath = \"data/fine_food_reviews_with_embeddings_1k_1126.csv\"\n",
    "df.to_csv(output_datapath)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "id": "788edc2b-af45-480b-aea9-b4c403ddac19",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "1536"
      ]
     },
     "execution_count": 6,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "embedding_datapath = \"data/fine_food_reviews_with_embeddings_1k_1126.csv\"\n",
    "df = pd.read_csv(embedding_datapath, index_col=0)\n",
    "df[\"embedding_vec\"] = df[\"embedding\"].apply(ast.literal_eval)\n",
    "len(df[\"embedding_vec\"][0])    # 1536，与openai定义维度一致\n",
    "# df.head(2)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "id": "2d3dc388-c526-4d7e-912e-1ba3002574c9",
   "metadata": {},
   "outputs": [],
   "source": [
    "assert df[\"embedding_vec\"].apply(len).nunique() == 1\n",
    "matrix = np.vstack(df[\"embedding_vec\"].values)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 15,
   "id": "e0fb8d91-7f82-46ba-bb05-f55faccfc2e8",
   "metadata": {},
   "outputs": [],
   "source": [
    "tsne = TSNE(n_components=2,perplexity=15,random_state=42,init='random',learning_rate=200)\n",
    "vis_dims = tsne.fit_transform(matrix)\n",
    "x = [x for x,y in vis_dims]\n",
    "y = [y for x,y in vis_dims]\n",
    "assert len(vis_dims) == len(df.Score.values)\n",
    "colors = [\"red\", \"darkorange\", \"gold\", \"turquoise\", \"darkgreen\"]\n",
    "color_indices = df.Score.values - 1"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 16,
   "id": "e22cef33-2e63-4f9c-8369-6dda587568c4",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "Text(0.5, 1.0, 'Amazon ratings visualized in language using t-SNE')"
      ]
     },
     "execution_count": 16,
     "metadata": {},
     "output_type": "execute_result"
    },
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 640x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "colormap = matplotlib.colors.ListedColormap(colors)\n",
    "plt.scatter(x, y, c=color_indices, cmap=colormap, alpha=0.3)\n",
    "plt.title(\"Amazon ratings visualized in language using t-SNE\")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 17,
   "id": "34acd15d-cd6e-4b51-b072-6fd9018d7ec6",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "12     0\n",
       "13     0\n",
       "14     0\n",
       "15     2\n",
       "16     0\n",
       "      ..\n",
       "447    0\n",
       "436    0\n",
       "437    1\n",
       "438    0\n",
       "439    0\n",
       "Name: cluster, Length: 1000, dtype: int32"
      ]
     },
     "execution_count": 17,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "n_clusters = 3\n",
    "kmeans = KMeans(n_clusters=n_clusters, init='k-means++', random_state=42, n_init=10)\n",
    "kmeans.fit(matrix)\n",
    "df[\"cluster\"] = kmeans.labels_\n",
    "df[\"cluster\"]\n",
    "# df.head(2)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 21,
   "id": "32c7799b-fff0-4fef-a7bf-a741b58fc5be",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "<Figure size 640x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "tsne_model = TSNE(n_components=2,random_state=42)\n",
    "vis_data = tsne_model.fit_transform(matrix)\n",
    "x = vis_data[:, 0]\n",
    "y = vis_data[:, 1]\n",
    "\n",
    "colors = [\"red\", \"green\", \"blue\", \"purple\"]\n",
    "color_indices = df['cluster'].values\n",
    "colormap = matplotlib.colors.ListedColormap(colors)\n",
    "plt.scatter(x, y, c=color_indices, cmap=colormap)\n",
    "plt.title(\"Clustering visualized in 2D using t-SNE\")\n",
    "plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 22,
   "id": "bdfa42ce-0d65-4f12-919f-e2feccb6c11c",
   "metadata": {},
   "outputs": [],
   "source": [
    "# 计算两个嵌入向量之间的余弦相似度\n",
    "def cosine_similarity(a, b):\n",
    "    return np.dot(a, b) / (np.linalg.norm(a) * np.linalg.norm(b))\n",
    "\n",
    "# 基于embedding进行搜索\n",
    "def search_reviews(df, product_description, n=3, pprint=True):\n",
    "    # 基于产品描述，计算产品的嵌入向量\n",
    "    product_embedding = embedding_text(product_description)\n",
    "    \n",
    "    # 基于计算结果，与所有的数据的向量结果比对，计算余弦相似度\n",
    "    df[\"similarity\"] = df.embedding_vec.apply(lambda x: cosine_similarity(x, product_embedding))\n",
    "    \n",
    "    # 对结果进行排序，获取前n条数据，拼装数据\n",
    "    results = (df.sort_values(\"similarity\", ascending=False)\n",
    "                .head(n)\n",
    "                .combined.str.replace(\"Title: \", \"\")\n",
    "                .str.replace(\"; Context: \", \": \")\n",
    "    )\n",
    "    \n",
    "    if pprint:\n",
    "        for r in results:\n",
    "            print(r[:200])\n",
    "            print()\n",
    "    return results"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 27,
   "id": "d0aab148-fbb8-47ac-adc4-cfb3a0d45519",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Healthy Dog Food; Content: This is a very healthy dog food. Good for their digestion. Also good for small puppies. My dog eats her required amount at every feeding.\n",
      "\n",
      "Doggy snacks; Content: My dog loves these snacks. However they are made in China and as far as I am concerned, suspect!!!! I found an abundance of American made ,human grade chicken dog snacks. Just G\n",
      "\n",
      "chow time; Content: a fine delicacy, with a pleasant smell and taste  that my dogs look forward to. Packaging is easy to store and dispose\n",
      "\n"
     ]
    }
   ],
   "source": [
    "res = search_reviews(df, \"dog food\", n=3)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "id": "cbee41f7-8929-40e6-be98-af705d8139a9",
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "langChain",
   "language": "python",
   "name": "langchain"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.11.11"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 5
}
